基于PID和最优策略的自动着陆神经控制器设计

H. Izadi, M. Pakmehr, M. Moghaddam
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引用次数: 3

摘要

研究了商用喷气式运输机纵向自动降落系统的神经控制器设计问题。为了训练神经控制器,在训练数据的选择上有很多策略。本文首先设计了自动著陆系统的PID和最优控制器。然后,利用这两个经典控制器的输出分别训练神经控制器。此外,通过施加阵风和改变飞行条件来研究控制器的鲁棒性。本文还讨论了控制器的其他优点和缺点。仿真结果表明,PID控制器具有鲁棒性,最优控制器具有良好的性能,是训练神经控制器的理想选择
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Designing Autolanding Neuro-Controller Using PID and Optimal Strategies
Designing a Neuro Controller for longitudinal autolanding system of a commercial jet transport has been considered. To train the neuro controller there are so many strategies in selecting the training data. In this paper, first a PID and an optimal controller for autolanding system have been designed. Then, the outputs of these two classic controllers have been used to train the neuro controller separately. Furthermore, the robustness of the controllers has been investigated by applying the gust and changing the flight conditions. Other advantages and disadvantages of the controllers have also been discussed. Simulation results show that PID controllers due to their robustness and Optimal controllers due to their performance are good candidates to train the neuro-controller
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